A Hybrid Methodology for Risk Mitigation During Development of Safety-Critical Autonomy Features

P. Zarifian, Divya Garikapati, Julia Pralle, Jennifer Dawson, Constantin Hubmann, Brielle Reiff, Raymond Tam, Gopi Gaddamadugu
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Abstract

As a relatively nascent field, engineers developing autonomous vehicle (AV) technologies need frequent performance feedback on whether algorithms are performing the driving task competently. Further, because of the complexity of AV systems, it is often lower risk to frequently test small, incremental changes instead of delaying testing and accumulating a large number of changes to the algorithms. While simulation and closed course testing are useful and critically important tools, ultimately driving on public roads is necessary to truly understand system performance and identify potential edge cases. Maintaining a high safety standard to protect all road users during continual public road testing is of paramount importance for the AV industry. The Waterfall methodology has a demonstrated track record for product safety, but does not provide much flexibility for prototyping and incremental testing. The Agile methodology is famous for enabling rapid development and incremental rollouts, but does not possess any inherent safety gates. When it comes to developing complex safety-critical autonomy features, particularly for dynamic environments such as in the case of autonomous vehicles, neither method is fitting. This paper presents a hybrid methodology that strikes a balance between safe and rapid development of autonomy features for the AV industry.
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安全关键自主特性开发过程中降低风险的混合方法
作为一个相对新兴的领域,开发自动驾驶汽车(AV)技术的工程师需要频繁的性能反馈,以确定算法是否能够胜任驾驶任务。此外,由于自动驾驶系统的复杂性,经常测试小的、增量的变化,而不是延迟测试和累积大量的算法变化,通常风险更低。虽然模拟和封闭道路测试是非常有用和重要的工具,但要真正了解系统性能并识别潜在的边缘情况,最终在公共道路上驾驶是必要的。在持续的公共道路测试中,保持高安全标准以保护所有道路使用者,对自动驾驶汽车行业至关重要。瀑布方法在产品安全方面有良好的记录,但是在原型和增量测试方面没有提供太多的灵活性。敏捷方法以支持快速开发和增量部署而闻名,但不具备任何固有的安全门。当涉及到开发复杂的安全关键自主功能时,特别是在自动驾驶汽车等动态环境中,这两种方法都不合适。本文提出了一种混合方法,在自动驾驶汽车行业的自动驾驶功能的安全和快速发展之间取得平衡。
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